Deep learning-based techniques have been introduced into the field of trajectory optimization in recent years. Deep Neural Networks (DNNs) are trained and used as the surrogates of conventional optimization process. They can provide low thrust (LT) transfer cost estimation and enable more complex preliminary mission designs. However, it is a challenge to efficiently obtain the required amount of trajectory data for training. A Generative Adversarial Network (GAN) is adapted to generate the feasible LT trajectory data efficiently. The GAN consists of a generator and a discriminator, both of which are deep networks. The generator generates fake LT transfer features using random noise as input, while the discriminator distinguishes the generator's fake LT transfer features from real LT transfer features. The GAN is trained until the generator generates fake LT transfers that the discriminator cannot identify. This indicates the generator generates low thrust transfer features that have the same distribution as the real transfer features. The generated low thrust transfer data have a high convergence rate, and they can be used to efficiently produce training data for deep learning models. The proposed approach is validated by generating feasible LT transfers in a Near-Earth Asteroid (NEA) mission scenario. The convergence rate of GAN-generated samples is 84.3%.
翻译:近年来,在轨迹优化领域引入了深深学习技术;深神经网络(DNNS)经过培训,并用作常规优化进程的替代物;它们可以提供低推(LT)传输成本估计,并能够进行更复杂的初步任务设计;然而,要高效率地获得所需数量的轨迹数据以进行培训是一项挑战;基因辅助网络(GAN)经过改造,以高效生成可行的LT轨迹数据;GAN由发电机和导师组成,两者都是深网络;发电机使用随机噪音生成假的LT传输功能,作为常规优化进程的替代物;而导师则将发电机的假LT传输功能与实际LT传输功能区分开来;在发电机产生歧视者无法识别的伪造LT传输功能之前,GAN接受培训;这表明发电机产生与实际传输功能分布相同的低推力传输功能;生成的低引力传输数据具有较高的趋同率,可用于高效生成深学习模型的培训数据;拟议的方法通过在近地84年的地球地热点取样中生成可行的LT转移(NEAN3)来验证。